SaaS runners on Linux

When you run jobs on SaaS runners on Linux, the runners are on auto-scaled ephemeral virtual machine (VM) instances. Each VM uses the Google Container-Optimized OS (COS) and the latest version of Docker Engine. The default region for the VMs is us-east1.

Machine types available for private projects (x86-64)

For the SaaS runners on Linux, GitLab offers a range of machine types for use in private projects. For Free, Premium, and Ultimate plan customers, jobs on these instances consume the CI/CD minutes allocated to your namespace.

 SmallMediumLarge
Specs1 vCPU, 3.75 GB RAM2 vCPUs, 8 GB RAM4 vCPUs, 16 GB RAM
GitLab CI/CD tagssaas-linux-small-amd64saas-linux-medium-amd64saas-linux-large-amd64
SubscriptionFree, Premium, UltimateFree, Premium, UltimatePremium, Ultimate

The small machine type is the default. Your job runs on this machine type if you don’t specify a tags: keyword in your .gitlab-ci.yml file.

CI/CD jobs that run on medium and large machine types consumes CI minutes at a different rate than CI/CD jobs on the small machine type.

Refer to the CI/CD minutes cost factor for the cost factor applied to the machine type based on size.

GPU-enabled SaaS runners on Linux

We offer GPU-enabled SaaS runners for heavy compute including ModelOps or HPC workloads. Available to Premium and Ultimate plan customers, jobs on these instances consume the CI/CD minutes allocated to your namespace.

 Standard
Specs4 vCPU, 16 GB RAM, 1 Nvidia Tesla T4 GPU (or similar)
GitLab CI/CD tagssaas-linux-medium-gpu-standard

Example of how to tag a job

To use a machine type other than small, add a tags: keyword to your job. For example:

stages:
  - Prebuild
  - Build
  - Unit Test

job_001:
 stage: Prebuild
 script:
  - echo "this job runs on the default (small) instance"

job_002:
 tags: [ saas-linux-medium-amd64 ]
 stage: Build
 script:
  - echo "this job runs on the medium instance"


job_003:
 tags: [ saas-linux-large-amd64 ]
 stage: Unit Test
 script:
  - echo "this job runs on the large instance"

SaaS runners for GitLab projects

The gitlab-shared-runners-manager-X.gitlab.com fleet of runners are dedicated for GitLab projects and related community forks. These runners are backed by a Google Compute n1-standard-2 machine type and do not run untagged jobs. Unlike the machine types used for private projects, each virtual machine is re-used up to 40 times.

SaaS runners on Linux settings

Below are the settings for SaaS runners on Linux.

SettingGitLab.comDefault
Executordocker+machine-
Default Docker imageruby:3.1-
privileged (run Docker in Docker)truefalse
  • Cache: These runners share a distributed cache that’s stored in a Google Cloud Storage (GCS) bucket. Cache contents not updated in the last 14 days are automatically removed, based on the object lifecycle management policy.

  • Timeout settings: Jobs handled by the SaaS Runners on Linux time out after 3 hours, regardless of the timeout configured in a project. For details, see issues #4010 and #4070.

note
SaaS runner instances are provisioned with a 25 GB storage volume. The underlying disk space of the storage volume is shared by the operating system, the Docker image, and a copy of your cloned repository. This means that the available free disk space that your jobs can use is less than 25 GB.

Pre-clone script (deprecated)

caution
This feature was deprecated in GitLab 15.9 and is planned for removal in 16.0. Use pre_get_sources_script instead. This change is a breaking change. With SaaS runners on Linux, you can run commands in a CI/CD job before the runner attempts to run git init and git fetch to download a GitLab repository. The pre_clone_script can be used for:
  • Seeding the build directory with repository data
  • Sending a request to a server
  • Downloading assets from a CDN
  • Any other commands that must run before the git init

To use this feature, define a CI/CD variable called CI_PRE_CLONE_SCRIPT that contains a bash script.

note
The CI_PRE_CLONE_SCRIPT variable does not work on GitLab SaaS Windows or macOS runners.

Pre-clone script example

This example was used in the gitlab-org/gitlab project until November 2021. The project no longer uses this optimization because the pack-objects cache lets Gitaly serve the full CI/CD fetch traffic. See Git fetch caching.

The CI_PRE_CLONE_SCRIPT was defined as a project CI/CD variable:

(
  echo "Downloading archived master..."
  wget -O /tmp/gitlab.tar.gz https://storage.googleapis.com/gitlab-ci-git-repo-cache/project-278964/gitlab-master-shallow.tar.gz

  if [ ! -f /tmp/gitlab.tar.gz ]; then
      echo "Repository cache not available, cloning a new directory..."
      exit
  fi

  rm -rf $CI_PROJECT_DIR
  echo "Extracting tarball into $CI_PROJECT_DIR..."
  mkdir -p $CI_PROJECT_DIR
  cd $CI_PROJECT_DIR
  tar xzf /tmp/gitlab.tar.gz
  rm -f /tmp/gitlab.tar.gz
  chmod a+w $CI_PROJECT_DIR
)

The first step of the script downloads gitlab-master.tar.gz from Google Cloud Storage. There was a GitLab CI/CD job named cache-repo that was responsible for keeping that archive up-to-date. Every two hours on a scheduled pipeline, it did the following:

  1. Create a fresh clone of the gitlab-org/gitlab repository on GitLab.com.
  2. Save the data as a .tar.gz.
  3. Upload it into the Google Cloud Storage bucket.

When a job ran with this configuration, the output looked similar to:

$ eval "$CI_PRE_CLONE_SCRIPT"
Downloading archived master...
Extracting tarball into /builds/gitlab-org/gitlab...
Fetching changes...
Reinitialized existing Git repository in /builds/gitlab-org/gitlab/.git/

The Reinitialized existing Git repository message shows that the pre-clone step worked. The runner runs git init, which overwrites the Git configuration with the appropriate settings to fetch from the GitLab repository.

CI_REPO_CACHE_CREDENTIALS must contain the Google Cloud service account JSON for uploading to the gitlab-ci-git-repo-cache bucket.

This bucket should be located in the same continent as the runner, or you can incur network egress charges.

config.toml

The full contents of our config.toml are:

note
Settings that are not public are shown as X.

Google Cloud Platform

concurrent = X
check_interval = 1
metrics_server = "X"
sentry_dsn = "X"

[[runners]]
  name = "docker-auto-scale"
  request_concurrency = X
  url = "https://gitlab.com/"
  token = "SHARED_RUNNER_TOKEN"
  pre_clone_script = "eval \"$CI_PRE_CLONE_SCRIPT\""
  executor = "docker+machine"
  environment = [
    "DOCKER_DRIVER=overlay2",
    "DOCKER_TLS_CERTDIR="
  ]
  limit = X
  [runners.docker]
    image = "ruby:3.1"
    privileged = true
    volumes = [
      "/certs/client",
      "/dummy-sys-class-dmi-id:/sys/class/dmi/id:ro" # Make kaniko builds work on GCP.
    ]
  [runners.machine]
    IdleCount = 50
    IdleTime = 3600
    MaxBuilds = 1 # For security reasons we delete the VM after job has finished so it's not reused.
    MachineName = "srm-%s"
    MachineDriver = "google"
    MachineOptions = [
      "google-project=PROJECT",
      "google-disk-size=25",
      "google-machine-type=n1-standard-1",
      "google-username=core",
      "google-tags=gitlab-com,srm",
      "google-use-internal-ip",
      "google-zone=us-east1-d",
      "engine-opt=mtu=1460", # Set MTU for container interface, for more information check https://gitlab.com/gitlab-org/gitlab-runner/-/issues/3214#note_82892928
      "google-machine-image=PROJECT/global/images/IMAGE",
      "engine-opt=ipv6", # This will create IPv6 interfaces in the containers.
      "engine-opt=fixed-cidr-v6=fc00::/7",
      "google-operation-backoff-initial-interval=2" # Custom flag from forked docker-machine, for more information check https://github.com/docker/machine/pull/4600
    ]
    [[runners.machine.autoscaling]]
      Periods = ["* * * * * sat,sun *"]
      Timezone = "UTC"
      IdleCount = 70
      IdleTime = 3600
    [[runners.machine.autoscaling]]
      Periods = ["* 30-59 3 * * * *", "* 0-30 4 * * * *"]
      Timezone = "UTC"
      IdleCount = 700
      IdleTime = 3600
  [runners.cache]
    Type = "gcs"
    Shared = true
    [runners.cache.gcs]
      CredentialsFile = "/path/to/file"
      BucketName = "bucket-name"